Convolutional neural network based children recognition system using contactless fingerprints.

Kanchana Rajaram, N G Bhuvaneswari Amma, S Selvakumar
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引用次数: 2

Abstract

Biometric features are useful for unique identification, authentication, and security applications. Among all biometric features, fingerprints are the most commonly used because they contain ridges and valleys. There are challenges in recognizing child or infant fingerprints since the ridges are not mature as the hands are covered with a white substance and acquisition of fingerprint images is difficult. In the context of COVID-19 pandemic, contactless fingerprint acquisition gains importance as it is not infectious especially with children. In this study, a Convolutional Neural Network (CNN) based children recognition system named Child-CLEF, that uses Contact-Less Children Fingerprint (CLCF) dataset acquired using a mobile phone-based scanner is proposed. The quality of captured fingerprint images is enhanced using a hybrid image enhancement method. Furthermore, the minutiae features are extracted using the proposed Child-CLEF Net model and the identification of children is made using a matching algorithm. The proposed system is tested with a self-captured children fingerprint dataset, CLCF and publicly available PolyU fingerprint dataset. It is found that the proposed system outperforms the existing fingerprint recognition systems in terms of accuracy and equal error rate.

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Abstract Image

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基于卷积神经网络的儿童非接触指纹识别系统。
生物识别功能对于独特的识别、身份验证和安全应用程序非常有用。在所有生物特征中,指纹是最常用的,因为它们包含山脊和山谷。在识别儿童或婴儿指纹方面存在挑战,因为由于手被白色物质覆盖,指纹脊还不成熟,并且指纹图像的获取很困难。在新冠肺炎大流行的背景下,非接触式指纹采集变得越来越重要,因为它不具有传染性,尤其是对儿童。在这项研究中,提出了一个基于卷积神经网络(CNN)的儿童识别系统,名为Child-CLEF,该系统使用手机扫描仪获取的无接触儿童指纹(CLCF)数据集。使用混合图像增强方法来增强捕获的指纹图像的质量。此外,使用所提出的Child-CLEF-Net模型提取细节特征,并使用匹配算法进行儿童识别。所提出的系统使用自行捕获的儿童指纹数据集、CLCF和公开的理大指纹数据集进行了测试。研究发现,该系统在准确度和等误码率方面优于现有的指纹识别系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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